利用计算机科学抽象技术实现自动化化学实验室的可重复性

0 CHEMISTRY, MULTIDISCIPLINARY
Richard B. Canty, Milad Abolhasani
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引用次数: 0

摘要

抽象对于自动化实验室科学在(生物)化学和材料科学领域的可移植性至关重要,而抽象的不当实现则会对实验结果的可重复性造成技术上的损失。几十年来,计算机科学已经为如何在编程语言中捕捉抽象概念制定了指导方针和策略,特别是关于抽象概念实现的可替代性和明确定义使用抽象概念的上下文。然而,为自动实验开发的编程语言很少能充分利用计算机科学中的智慧。要想通过自动化实验室实现科学知识的协作共享,机器代理编纂和解释实验协议的方式必须负责任地使用抽象概念,并以可重复性而不仅仅是可移植性为核心。本综述将讨论如何将计算机科学的抽象原则转化为可重现性更高的自动化,从而加速自动驾驶实验室的合作研究。自动化和自主化学实验室中的数字工作流程表示可以通过使用抽象概念实现可移植性。然而,这种抽象必须遵守一定的规则,以确保可重复性。从计算机科学中汲取的负责任抽象的经验被应用到自动化化学实验室中,以指导数字工作流程的开发,从而实现可重复性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Reproducibility in automated chemistry laboratories using computer science abstractions

Reproducibility in automated chemistry laboratories using computer science abstractions
While abstraction is critical for the transferability of automated laboratory science in (bio)chemical and materials sciences, its improper implementation is a technical debt taken against the reproducibility of experimental results. Over the decades, computer science has developed guidelines and strategies for how abstractions are captured in programming languages—particularly concerning the substitutability of implementations of abstracted ideas and the clear definition of the contexts in which abstractions are used. However, few programming languages developed for automated experiments fully leverage the wisdom learned in computer science. To achieve collaborative sharing of scientific knowledge via automated laboratories, the way that experimental protocols are codified and interpreted by machine agents must use abstractions responsibly and with reproducibility, rather than solely transferability, at its core. This Review discusses how computer science principles of abstraction can be translated to create more reproducible automation as an enabler for the acceleration of collaborative research with self-driving laboratories. Digital workflow representations in automated and autonomous chemistry laboratories can achieve transferability by using abstract concepts. However, such abstractions must abide by certain rules to ensure reproducibility. Lessons learned from computer science for responsible abstraction are translated into an automated chemistry laboratory context to guide digital workflow development towards reproducibility.
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CiteScore
8.10
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